File Download

There are no files associated with this item.

  Links for fulltext
     (May Require Subscription)
Supplementary

Article: Multi-task heterogeneous graph learning on electronic health records

TitleMulti-task heterogeneous graph learning on electronic health records
Authors
KeywordsCausal inference
Electronic health records
Graph representation learning
Multi-task learning
Issue Date1-Dec-2024
PublisherElsevier
Citation
Neural Networks, 2024, v. 180 How to Cite?
AbstractLearning electronic health records (EHRs) has received emerging attention because of its capability to facilitate accurate medical diagnosis. Since the EHRs contain enriched information specifying complex interactions between entities, modeling EHRs with graphs is shown to be effective in practice. The EHRs, however, present a great degree of heterogeneity, sparsity, and complexity, which hamper the performance of most of the models applied to them. Moreover, existing approaches modeling EHRs often focus on learning the representations for a single task, overlooking the multi-task nature of EHR analysis problems and resulting in limited generalizability across different tasks. In view of these limitations, we propose a novel framework for EHR modeling, namely MulT-EHR (Multi-Task EHR), which leverages a heterogeneous graph to mine the complex relations and model the heterogeneity in the EHRs. To mitigate the large degree of noise, we introduce a denoising module based on the causal inference framework to adjust for severe confounding effects and reduce noise in the EHR data. Additionally, since our model adopts a single graph neural network for simultaneous multi-task prediction, we design a multi-task learning module to leverage the inter-task knowledge to regularize the training process. Extensive empirical studies on MIMIC-III and MIMIC-IV datasets validate that the proposed method consistently outperforms the state-of-the-art designs in four popular EHR analysis tasks — drug recommendation, and predictions of the length of stay, mortality, and readmission. Thorough ablation studies demonstrate the robustness of our method upon variations to key components and hyperparameters.
Persistent Identifierhttp://hdl.handle.net/10722/350834
ISSN
2023 Impact Factor: 6.0
2023 SCImago Journal Rankings: 2.605

 

DC FieldValueLanguage
dc.contributor.authorChan, Tsai Hor-
dc.contributor.authorYin, Guosheng-
dc.contributor.authorBae, Kyongtae-
dc.contributor.authorYu, Lequan-
dc.date.accessioned2024-11-03T00:30:42Z-
dc.date.available2024-11-03T00:30:42Z-
dc.date.issued2024-12-01-
dc.identifier.citationNeural Networks, 2024, v. 180-
dc.identifier.issn0893-6080-
dc.identifier.urihttp://hdl.handle.net/10722/350834-
dc.description.abstractLearning electronic health records (EHRs) has received emerging attention because of its capability to facilitate accurate medical diagnosis. Since the EHRs contain enriched information specifying complex interactions between entities, modeling EHRs with graphs is shown to be effective in practice. The EHRs, however, present a great degree of heterogeneity, sparsity, and complexity, which hamper the performance of most of the models applied to them. Moreover, existing approaches modeling EHRs often focus on learning the representations for a single task, overlooking the multi-task nature of EHR analysis problems and resulting in limited generalizability across different tasks. In view of these limitations, we propose a novel framework for EHR modeling, namely MulT-EHR (Multi-Task EHR), which leverages a heterogeneous graph to mine the complex relations and model the heterogeneity in the EHRs. To mitigate the large degree of noise, we introduce a denoising module based on the causal inference framework to adjust for severe confounding effects and reduce noise in the EHR data. Additionally, since our model adopts a single graph neural network for simultaneous multi-task prediction, we design a multi-task learning module to leverage the inter-task knowledge to regularize the training process. Extensive empirical studies on MIMIC-III and MIMIC-IV datasets validate that the proposed method consistently outperforms the state-of-the-art designs in four popular EHR analysis tasks — drug recommendation, and predictions of the length of stay, mortality, and readmission. Thorough ablation studies demonstrate the robustness of our method upon variations to key components and hyperparameters.-
dc.languageeng-
dc.publisherElsevier-
dc.relation.ispartofNeural Networks-
dc.subjectCausal inference-
dc.subjectElectronic health records-
dc.subjectGraph representation learning-
dc.subjectMulti-task learning-
dc.titleMulti-task heterogeneous graph learning on electronic health records-
dc.typeArticle-
dc.identifier.doi10.1016/j.neunet.2024.106644-
dc.identifier.scopuseid_2-s2.0-85201780614-
dc.identifier.volume180-
dc.identifier.eissn1879-2782-
dc.identifier.issnl0893-6080-

Export via OAI-PMH Interface in XML Formats


OR


Export to Other Non-XML Formats